Bridging the genotype-phenotype gap with generative artificial intelligence
Yangfan Liu, Xiong Xiong, Yong Liao, Mingli Qin, Zhen Huang, Shilin Zhu, Lilin Yin, Yuhua Fu, Haohao Zhang, Jingya Xu, Dong Yin, Xin Huang, Yuan Quan, Xuan Li, Tengfei Jiang, Wanneng Yang, Xiaohui Yuan, Laurent Frantz, Xinyun Li, Xiaolei Liu, Shuhong Zhao

TL;DR
AIPheno is a novel generative AI tool that creates high-throughput digital phenotypes from imaging data, improving genetic discovery and biological interpretation across species, thereby bridging the longstanding genotype-phenotype gap.
Contribution
It introduces AIPheno, the first AI-driven phenotype sequencer that combines scalable digital phenotyping with generative analysis for biological insights.
Findings
Discovered new genetic loci in humans, pigeons, and swine.
Enhanced cross-species genetic discovery capabilities.
Deciphered biological mechanisms linking genetic loci to traits.
Abstract
The genotype-phenotype gap is a persistent barrier to complex trait genetic dissection, worsened by the explosive growth of genomic data (1.5 billion variants identified in the UK Biobank WGS study) alongside persistently scarce and subjective human-defined phenotypes. Digital phenotyping offers a potential solution, yet existing tools fail to balance scalable non-manual phenotype generation and biological interpretability of these quantitative traits. Here we report AIPheno, the first generative AI-driven "phenotype sequencer" that bridges this gap. It enables high-throughput, unsupervised extraction of digital phenotypes from imaging data and unlocks their biological meaning via generative network analysis. AIPheno transforms imaging modalities into a rich source of quantitative traits, dramatically enhancing cross-species genetic discovery, including novel loci such as CCBE1…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Genomics and Rare Diseases · Cell Image Analysis Techniques
